학술논문

Knowledge-based classification of fine-grained immune cell types in single-cell RNA-Seq data.
Document Type
Article
Source
Briefings in Bioinformatics. Sep2021, Vol. 22 Issue 5, p1-11. 11p.
Subject
*RNA sequencing
*T cells
*CELL populations
*DEEP learning
*MACHINE learning
*FLOW cytometry
Language
ISSN
1467-5463
Abstract
Single-cell RNA sequencing (scRNA-Seq) is an emerging strategy for characterizing immune cell populations. Compared to flow or mass cytometry, scRNA-Seq could potentially identify cell types and activation states that lack precise cell surface markers. However, scRNA-Seq is currently limited due to the need to manually classify each immune cell from its transcriptional profile. While recently developed algorithms accurately annotate coarse cell types (e.g. T cells versus macrophages), making fine distinctions (e.g. CD8+ effector memory T cells) remains a difficult challenge. To address this, we developed a machine learning classifier called ImmClassifier that leverages a hierarchical ontology of cell type. We demonstrate that its predictions are highly concordant with flow-based markers from CITE-seq and outperforms other tools (+15% recall, +14% precision) in distinguishing fine-grained cell types with comparable performance on coarse ones. Thus, ImmClassifier can be used to explore more deeply the heterogeneity of the immune system in scRNA-Seq experiments. [ABSTRACT FROM AUTHOR]